Optimization algorithm for learning consistent belief rule-base from examples
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Fecha
2011-10
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Editor
Springer Link
Resumen
A belief rule-based inference approach and its corresponding optimization algorithm deal with a rule-base with a belief structure called a belief rule base (BRB) that forms a basis in the inference mechanism. In this paper, a new learning method is proposed based on the given sample data for optimally generating a consistent BRB. The focus is given on the consistency of BRB knowing that the consistency conditions are often violated if the system is generated from real world data. The measurement of BRB inconsistency
is incorporated in the objective function of the optimization algorithm. This process is formulated
as a non-linear constraint optimization problem and solved using the optimization tool provided in MATLAB. A numerical example is demonstrated the effectiveness of the proposed algorithm.
Descripción
Palabras clave
Belief rule base, Optimization, Consistency, Learning
Citación
J. Liu, L. Martinez, D. Ruan et al. Optimization algorithm for learning consistent belief rule-base from examples. J Glob Optim 51, 255–270 (2011)